IT directors, CIO s, IT Managers, BI Managers, data warehousing professionals, data scientists, enterprise architects, data architects

Similar documents
Big Data Technology Ecosystem. Mark Burnette Pentaho Director Sales Engineering, Hitachi Vantara

SQT03 Big Data and Hadoop with Azure HDInsight Andrew Brust. Senior Director, Technical Product Marketing and Evangelism

Stages of Data Processing

SpagoBI and Talend jointly support Big Data scenarios

Ian Choy. Technology Solutions Professional

Microsoft Analytics Platform System (APS)

BIG DATA COURSE CONTENT

Data Lake Based Systems that Work

R Language for the SQL Server DBA

Big Data Architect.

The Technology of the Business Data Lake. Appendix

Drawing the Big Picture

Oracle Big Data Fundamentals Ed 2

Big Data Hadoop Developer Course Content. Big Data Hadoop Developer - The Complete Course Course Duration: 45 Hours

Modern Data Warehouse The New Approach to Azure BI

Oracle GoldenGate for Big Data

Blended Learning Outline: Cloudera Data Analyst Training (171219a)

The TIBCO Insight Platform 1. Data on Fire 2. Data to Action. Michael O Connell Catalina Herrera Peter Shaw September 7, 2016

Processing Unstructured Data. Dinesh Priyankara Founder/Principal Architect dinesql Pvt Ltd.

1Z Oracle Big Data 2017 Implementation Essentials Exam Summary Syllabus Questions

Syncsort DMX-h. Simplifying Big Data Integration. Goals of the Modern Data Architecture SOLUTION SHEET

BigInsights and Cognos Stefan Hubertus, Principal Solution Specialist Cognos Wilfried Hoge, IT Architect Big Data IBM Corporation

Overview. : Cloudera Data Analyst Training. Course Outline :: Cloudera Data Analyst Training::

Big Data Hadoop Stack

CERTIFICATE IN SOFTWARE DEVELOPMENT LIFE CYCLE IN BIG DATA AND BUSINESS INTELLIGENCE (SDLC-BD & BI)

Data Architectures in Azure for Analytics & Big Data

Microsoft Big Data and Hadoop

WHITEPAPER. MemSQL Enterprise Feature List

Fast Innovation requires Fast IT

The age of Big Data Big Data for Oracle Database Professionals

Oracle Big Data Fundamentals Ed 1

Building an Integrated Big Data & Analytics Infrastructure September 25, 2012 Robert Stackowiak, Vice President Data Systems Architecture Oracle

What does SAS Data Management do? For whom is SAS Data Management designed? Key Benefits

Oracle Big Data Connectors

Understanding the latent value in all content

Data 101 Which DB, When. Joe Yong Azure SQL Data Warehouse, Program Management Microsoft Corp.

Big Data with Hadoop Ecosystem

New Approaches to Big Data Processing and Analytics

Intro to BI Architecture Warren Sifre

Swimming in the Data Lake. Presented by Warner Chaves Moderated by Sander Stad

Informatica Enterprise Information Catalog

Big Data on AWS. Peter-Mark Verwoerd Solutions Architect

Hadoop. Introduction / Overview

Accelerate Your Data Pipeline for Data Lake, Streaming and Cloud Architectures

The Reality of Qlik and Big Data. Chris Larsen Q3 2016

Oracle Data Integrator 12c: Integration and Administration

Seoul Elasticsearch Community Meetup

An InterSystems Guide to the Data Galaxy. Benjamin De Boe Product Manager

Hadoop course content

Smart Data Catalog DATASHEET

@Pentaho #BigDataWebSeries

Increase Value from Big Data with Real-Time Data Integration and Streaming Analytics

A Guide to Best Practices

Microsoft certified solutions associate

Big Data Specialized Studies

Azure Data Factory VS. SSIS. Reza Rad, Consultant, RADACAD

Data sources. Gartner, The State of Data Warehousing in 2012

Oracle Data Integrator 12c: Integration and Administration

Sources. P. J. Sadalage, M Fowler, NoSQL Distilled, Addison Wesley

Modernizing Business Intelligence and Analytics

BEST BIG DATA CERTIFICATIONS

Asanka Padmakumara. ETL 2.0: Data Engineering with Azure Databricks

Activator Library. Focus on maximizing the value of your data, gain business insights, increase your team s productivity, and achieve success.

Data 101 Which DB, When Joe Yong Sr. Program Manager Microsoft Corp.

Apache Solr A Practical Approach To Enterprise Search

Azure Data Factory. Data Integration in the Cloud

Innovatus Technologies

<Insert Picture Here> Introduction to Big Data Technology

MAPR DATA GOVERNANCE WITHOUT COMPROMISE

Top Five Reasons for Data Warehouse Modernization Philip Russom

Overview of Data Services and Streaming Data Solution with Azure

DATA SCIENCE USING SPARK: AN INTRODUCTION

COURSE 10977A: UPDATING YOUR SQL SERVER SKILLS TO MICROSOFT SQL SERVER 2014

Saving ETL Costs Through Data Virtualization Across The Enterprise

Composite Software Data Virtualization The Five Most Popular Uses of Data Virtualization

Modern ETL Tools for Cloud and Big Data. Ken Beutler, Principal Product Manager, Progress Michael Rainey, Technical Advisor, Gluent Inc.

Implementing a Data Warehouse with Microsoft SQL Server 2012

Oracle Big Data Science

Spotfire for the Enterprise: An Overview for IT Administrators

Hadoop, Yarn and Beyond

Eight Essential Checklists for Managing the Analytic Data Pipeline

EMEA USERS CONFERENCE BERLIN, GERMANY. Copyright 2016 OSIsoft, LLC

Big Data Hadoop Course Content

Cisco and Cloudera Deliver WorldClass Solutions for Powering the Enterprise Data Hub alerts, etc. Organizations need the right technology and infrastr

Interactive SQL-on-Hadoop from Impala to Hive/Tez to Spark SQL to JethroData

Things Every Oracle DBA Needs to Know about the Hadoop Ecosystem. Zohar Elkayam

Implementing a Data Warehouse with Microsoft SQL Server 2012

New Technologies for Data Management

Oracle Big Data Science IOUG Collaborate 16

Bring Context To Your Machine Data With Hadoop, RDBMS & Splunk

From Single Purpose to Multi Purpose Data Lakes. Thomas Niewel Technical Sales Director DACH Denodo Technologies March, 2019

Data Warehouse Design Decisions

TimeXtender extends beyond data warehouse automation with Discovery Hub

20777A: Implementing Microsoft Azure Cosmos DB Solutions

Chapter 6. Foundations of Business Intelligence: Databases and Information Management VIDEO CASES

Big Data. Big Data Analyst. Big Data Engineer. Big Data Architect

Data-Intensive Distributed Computing

Welcome! Power BI User Group (PUG) Copenhagen

Oracle Big Data Discovery

Alexander Klein. #SQLSatDenmark. ETL meets Azure

Transcription:

Organised by: www.unicom.co.uk OVERVIEW This two day workshop is aimed at getting Data Scientists, Data Warehousing and BI professionals up to scratch on Big Data, Hadoop, other NoSQL DBMSs and Multi-Platform Analytics. What is Big Data? How can you make use of it? How does it fit within a traditional analytical environment? What skills do you need to develop for Big Data Analytics? All of these questions are addressed in this newknowledge packed workshop. AUDIENCE IT directors, CIO s, IT Managers, BI Managers, data warehousing professionals, data scientists, enterprise architects, data architects LEARNING OBJECTIVES Attendees to this seminar will learn: What Big Data is How Big Data creates several new types of analytical workload Big Data technology platforms beyond the data warehouse Big Data analytical techniques and front-end tools How to analyse un-modelled, multi-structured data using Hadoop, MapReduce& Spark How to integrate Big Data with traditional data warehouses and BI systems How to clearly understand business use cases for different Big Data technologies How to set up and organise Big Data projects including skills How to make use of Big Data to deliver business value MODULE 1: AN INTRODUCTION TO BIG DATA This session defines big data and looks at business reasons for wanting to make use of this new area of technology. It looks at Big Data use cases and what the difference is between traditional BI and Data Warehousing versus Big Data What is Big Data? Types of Big Data Why analyse Big Data? The need to analyse new more complex data sources Industry use cases - Popular big data analytic applications What is Data Science? Data Warehousing and BI Versus Big Data Popular patterns for Big Data technologies

MODULE 2: AN INTRODUCTION TO BIG DATA ANALYTICS This session looks at Big Data Analytical workloads, the technology components involved and how you can integrate thesewith existing DW/BI systems in a new architecture for end-to-end analytics and to enrich business insight. It also looks at how to preserve existing investment in data management and BI tools across DW and Big Data platforms Types of Big Data analytical workloads Streaming data analytics at high velocity Exploratory analysis of multi-structured data Complex analysis of structured data Graph analytics Challenges when managing and analysing big data Key components in a Big Data Analytics environment Preserving existing BI/DW investments The Big Data Extended Analytical Ecosystem MODULE 3: BIG DATA PLATFORMS AND STORAGE OPTIONS This session looks at platforms and data storage options for big data analytics The new multi-platform analytical ecosystem Beyond the data warehouse - Hadoop NoSQL and analytical RDBMSs, NewSQL DBMSs NoSQL DBMSs Key Value stores, Document DBMSs, Column Family DBMSs and Graph databases An introduction to Hadoop and the Hadoop Stack HDFS, MapReduce, Pig & Hive Apache Spark Framework SQL on Hadoop options Impala, Hive, SparkSQL, HawQ, HP Vertica SQL on Hadoop, IBM BigSQL, CitusData, Jethro, Splice Machine, ActianAnalytics Platform, Oracle Big Data SQL, Teradata QueryGrid The Big Data Marketplace Hadoop distributions - Cloudera, Hortonworks, MapR, BM Big Insights, IBM Open Platform with Apache Hadoop, Microsoft HD Insight Big Data Appliances - Oracle Big Data Appliance, IBM PureData System for Hadoop, HPE Big Data Platform, Teradata Aster Discovery Server NoSQL databases, e.g. DataStax, Neo4j, Cray, MongoDB, Basho Riak The Cloud deployment option - Microsoft Azure (HDInsight, Data Lake + Data Factory) IBMBluemix, Amazon Elastic MapReduce, Altiscale (a SAP Company) Data Cloud, Qubole, Oracle Analytics Cloud Creating a multi-platform analytical ecosystem

MODULE 4: BIG DATA INTEGRATION AND GOVERNANCE IN A MULTI-PLATFORM ANALYTICAL ENVIRONMENT This session will look at the challenge of integrating and governing Big Data and the unique issues it raises. How do you deal with very large data volumes and different varieties of data? How does loading data into Hadoop differ from loading data into analytical relational databases? What about NoSQL databases? How should low-latency data be handled? Topics that will be covered include: Types of Big Data Connecting to Big Data sources, e.g. web logs, clickstream, sensor data, and multi-structured content Supplying consistent data to multiple analytical platforms Loading Big Data what s different about loading HDFS, Hive & NoSQL Vs analytical relational databases Change data capture what s possible Data warehouse offload Tools for ELT processing on Hadoop The Enterprise Data Refinery ETL tools Vs Pig Vs self-service DI/DQ Dealing with data quality in a Big Data environment Parsing unstructured data Governing data in a Data Science environment Joined up analytical processing from ETL to analytical workflows The impact of data scientist and end user self-service DQ/DI Paxata, Trifacta, MS Excel Power Query, MicroStrategy, Tableau Mapping discovered data of value into your DW and business vocabulary Big data audit, protection and security -Cloudera Sentry, Dataguise, Hortonworks Ranger, IBM Security Guardium, Protegrity MODULE 5: TOOLS AND TECHNIQUES FOR ANALYSING BIG DATA This session looks at platforms and data storage options for big data analytics Data Science projects Creating Sandboxes for Data Science projects Options for analysing unstructured content Text analytics, custom MapReduce code and MapReduce developer tools Using R as an analytical language for Big Data Text analysis and visualisation, Sentiment analysis and visualisation Clickstream analysis and visualisation Analysing big data using MapReduce BI Tools and applications for Hadoop, e.g. ClearStory Data, Datameer, FICO Big Data Analyser Exploratory graph analysis and visualisations Using search to analyse multi-structured data Creating search indexes on multi-structured data Building dashboards and reports on top of search engine indexed content The integration of search with traditional BI platforms Guided analysis using multi-faceted search The marketplace: Apache Solr, Attivio, Cloudera Search, Connexica, DataRPM, HPE IDOL, IBI WebFocus Magnify, IBM Watson Explorer, LucidWorks, Microsoft, Oracle Endeca, Oracle Big Data Discovery, Quid, Splunk Analysing Big Data using Self-Service BI/Analytics Tools, e.g. Dell Statistica, Excel, IBM Watson Analytics, MicroStrategy, Qlik, RapidMiner, SAP BusinessObjectsLumira, SAS Visual Analytics, Tableau, TIBCO Spotfire, Zoomdata Big data analytics query performance enablers Managing stream computing in a Big Data environment Tools and techniques for streaming analytics

MODULE 6: INTEGRATING BIG DATA ANALYTICS INTO THE ENTERPRISE This session looks at how new Big Data platforms can be integrated with traditional Data Warehouses and Data Marts. It looks at stream processing, Hadoop, NoSQL databases, Data Warehouse appliances and shows how to put them together in an end-toend architecture to maximise business value from Big Data Integrating Big Data platformswith traditional DW/BI environments what's involved Integrating stream processing with Hadoop and Analytical DW Appliances Integrating Hadoop with DW Appliances and Enterprise Data Warehouses Tying together front end tools Options for implementing multi-platform analytics Cross-platform analytical workflows The role of Data Virtualisation in a Big Data environment Multi-platform optimisation Who Should attend? IT directors, CIO s, IT Managers, BI Managers, data warehousing professionals, data scientists, enterprise architects, data architects and others wanting to up to scratch on Big Data, Hadoop, other NoSQL DBMSs and Multi-Platform Analytics. What are the learning objectives? Attendees on this seminar will learn: What Big Data is How Big Data creates several new types of analytical workload Big Data technology platforms beyond the data warehouse Big Data analytical techniques and front-end tools How to analyse un-modelled, multi-structured data using Hadoop, MapReduce& Spark How to integrate Big Data with traditional data warehouses and BI systems How to clearly understand business use cases for different Big Data technologies How to set up and organise Big Data projects including skills How to make use of Big Data to deliver business value PRESENTER Mike Ferguson is Managing Director of Intelligent Business Strategies Limited. As an analyst and consultant he specialises in BI/Analytics,Big Data and Data Management. With over 34 years of IT experience, Mike has consulted for dozens of companies on BI, technology selection, Big Data, enterprise architecture, and data management. He has spoken at events all over the world and written numerous articles. Mike provides articles, blogs and his insights on the industry. Formerly he was a principal and co-founder of Codd and Date Europe Limited the inventors of the Relational Model, a Chief Architect at Teradata on the Teradata DBMS and European Managing Director of Database Associates. He teaches popular master classes in BI, Big Data Analytics, Data Governance & Master Data Management.

Ticket Prices 07 Dec 2016, London 2 Days Course Price: 1095.00 +VAT Contact UNICOM Seminars Ltd OptiRisk R&D House One Oxford Road Uxbridge UB9 4DA, UNITED KINGDOM www.unicom.co.uk +44 (0) 1895 256484 +44 (0) 1895 813095 Info@unicom.co.uk